论文标题
意大利COVID-19的流行病模型
A SIDARTHE Model of COVID-19 Epidemic in Italy
论文作者
论文摘要
2019年12月下旬,在中国武汉,中国武汉发现了严重的,潜在的致命呼吸道综合症(Covid-19)的新型冠状病毒(SARS-COV-2),并在多个世界国家造成了爆发,很快就成为大流行。意大利现在已成为亚洲以外的最受欢迎的国家:2020年3月16日,意大利民政记录了27980例确认的案件和2158例对SARS-COV-2阳性的人死亡。在新兴的传染病暴发的背景下,预测流行病的趋势以计划有效的控制策略并确定其影响至关重要。本文提出了一种新的流行病模型,该模型根据是否被诊断并根据其症状的严重性来区分感染者。诊断和未诊断的区别很重要,因为非诊断的个体比诊断感染更可能传播感染,因为后者通常是孤立的,并且可以解释对病例死亡率的误解以及流行病现象的严重性。能够预测会出现威胁生命的症状的患者数量很重要,因为该疾病经常需要住院(甚至是重症监护病房),并挑战医疗系统的能力。我们展示了如何在新框架中重新定义基本的繁殖数,从而捕捉了流行病的潜力。将仿真结果与意大利Covid-19流行病的真实数据进行了比较,以显示模型的有效性并根据所采用的对策比较不同可能的预测场景。
In late December 2019, a novel strand of Coronavirus (SARS-CoV-2) causing a severe, potentially fatal respiratory syndrome (COVID-19) was identified in Wuhan, Hubei Province, China and is causing outbreaks in multiple world countries, soon becoming a pandemic. Italy has now become the most hit country outside of Asia: on March 16, 2020, the Italian Civil Protection documented a total of 27980 confirmed cases and 2158 deaths of people tested positive for SARS-CoV-2. In the context of an emerging infectious disease outbreak, it is of paramount importance to predict the trend of the epidemic in order to plan an effective control strategy and to determine its impact. This paper proposes a new epidemic model that discriminates between infected individuals depending on whether they have been diagnosed and on the severity of their symptoms. The distinction between diagnosed and non-diagnosed is important because non-diagnosed individuals are more likely to spread the infection than diagnosed ones, since the latter are typically isolated, and can explain misperceptions of the case fatality rate and of the seriousness of the epidemic phenomenon. Being able to predict the amount of patients that will develop life-threatening symptoms is important since the disease frequently requires hospitalisation (and even Intensive Care Unit admission) and challenges the healthcare system capacity. We show how the basic reproduction number can be redefined in the new framework, thus capturing the potential for epidemic containment. Simulation results are compared with real data on the COVID-19 epidemic in Italy, to show the validity of the model and compare different possible predicted scenarios depending on the adopted countermeasures.